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Update app.py
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import gradio as gr
import pandas as pd
import pickle
from sentence_transformers import SentenceTransformer, util
import re
mdl_name = 'sentence-transformers/all-distilroberta-v1'
model = SentenceTransformer(mdl_name)
embedding_cache_path = "scotch_embd_distilroberta.pkl"
with open(embedding_cache_path, "rb") as fIn:
cache_data = pickle.load(fIn)
embedding_table = cache_data["embeddings"]
reviews = cache_data["data"]
reviews['price'] = reviews.price.apply(lambda x: re.findall("\d+", x.replace(",","").replace(".00","").replace("$",""))[0]).astype('int')
def user_query_recommend(query, min_p, max_p):
# Embed user query
embedding = model.encode(query)
# Calculate similarity with all reviews
sim_scores = util.cos_sim(embedding, embedding_table)
#print(sim_scores.shape)
# Recommend
recommendations = reviews.copy()
recommendations['sim'] = sim_scores.T
recommendations = recommendations.sort_values('sim', ascending=False)
recommendations = recommendations.loc[(recommendations.price >= min_p) &
(recommendations.price <= max_p),
['name', 'category', 'price', 'description', 'sim']]
return recommendations
interface = gr.Interface(
user_query_recommend,
inputs=[gr.inputs.Textbox(),
gr.inputs.Slider(minimum=1, maximum=100, default=30, label='Min Price'),
gr.inputs.Slider(minimum=1, maximum=1000, default=70, label='Max Price')],
outputs=[
gr.outputs.Textbox(label="Recommendations"),
],
title = "Scotch Recommendation",
examples=[["very sweet with lemons and oranges and marmalades", 20,50],
["smoky peaty earthy and spicy",50,100]],
theme="huggingface",
)
interface.launch(
enable_queue=True,
#cache_examples=True,
)